2021
DOI: 10.48550/arxiv.2111.15422
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Hierarchical Prototype Networks for Continual Graph Representation Learning

Abstract: Despite significant advances in graph representation learning, little attention has been paid to the more practical continual learning scenario in which new categories of nodes (e.g., new research areas in citation networks, or new types of products in co-purchasing networks) and their associated edges are continuously emerging, causing catastrophic forgetting on previous categories. Existing methods either ignore the rich topological information or sacrifice plasticity for stability. To this end, we present H… Show more

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